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Association mining of search tags in PubMed search sessions

机译:在PubMed搜索会话中搜索标记的关联挖掘

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Background: Previous studies have shown that use of search tags in PubMed can significantly improve the performance of information retrieval. The objective of this study was to discover associations among search tags in typical PubMed search sessions. Methods: We performed session segmentation on a full-day PubMed query log, identified the search tags within those sessions, and applied association mining to identify strong associations of search tags. Results: A total of eight maximal frequent-itemsets (i.e. search tags) and 34 strong association rules from these itemsets were discovered. We also estimated that the query refinement occurs frequently (i.e. one query per minute on average) for any session length. Conclusions: The association rules consisting of PubMed search tags can be used to develop an interactive and intelligent PubMed search interface so that the users can build the search query using proper search tags and reduce the frequency of query refinement.
机译:背景:先前的研究表明,在PubMed中使用搜索标签可以显着提高信息检索的性能。这项研究的目的是发现典型PubMed搜索会话中搜索标签之间的关联。方法:我们对全天的PubMed查询日志执行了会话细分,识别了这些会话中的搜索标签,并应用关联挖掘来识别搜索标签的强关联。结果:从这些项目集中总共发现了八个最大频繁项目集(即搜索标签)和34个强关联规则。我们还估计,对于任何会话长度,查询优化都会频繁发生(即平均每分钟查询一次)。结论:由PubMed搜索标签组成的关联规则可用于开发交互式智能智能PubMed搜索界面,以便用户可以使用适当的搜索标签构建搜索查询,并减少查询细化的频率。

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